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Simulation Experiment of 3D Digital Core Visual Modeling Based on SCILAB Software

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DOI: 10.23977/acss.2022.060703 | Downloads: 24 | Views: 568

Author(s)

Yunye Liu 1, Hai Zhu 1

Affiliation(s)

1 Guangzhou Gas Group, Guangzhou, China

Corresponding Author

Yunye Liu

ABSTRACT

This paper briefly introduces the process of using scilab software to carry out the simulation experiment of 3D digital core modeling, expounds in detail the theoretical method of establishing 3D digital core by process method, and introduces the setting method of each parameter in the algorithm. The research shows that the 3D digital core visual modeling can be well realized by using scilab software. The rock particle skeleton is tightly packed, and the generated rock pore has good space connectivity. The algorithm model can be further improved after considering the compaction effect and cementation type of the actual formation rock, and there is room for improvement in this 3D digital core visual modeling.

KEYWORDS

Digital core, SCILAB, simulation, process method, sedimentation, rock particles

CITE THIS PAPER

Yunye Liu, Hai Zhu, Simulation Experiment of 3D Digital Core Visual Modeling Based on SCILAB Software. Advances in Computer, Signals and Systems (2022) Vol. 6: 18-23. DOI: http://dx.doi.org/10.23977/acss.2022.060703.

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